结肠腺癌诊断的数学分析

Celal Cigir, C. Sokmensuer, C. Gunduz-Demir
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引用次数: 0

摘要

包括癌症在内的肿瘤疾病会引起组织的改变。组织病理学检查通常用于这些疾病的诊断和分级,它依赖于病理学家在显微镜下识别这些组织变化。然而,由于这种检查主要依赖于病理学家的视觉解释,它可能导致相当多的主观性。为了降低主观程度,建议使用提供客观度量的计算方法。这些方法通过定义组织图像上的特征来量化与疾病相关的组织变化。本文利用不同的特征提取方法对结肠腺体进行数学分析。在这个分析中,形态学,基于强度和纹理特征进行了研究,并使用这些特征对腺体进行了分类。通过对36名患者的108个结肠组织的图像进行研究,我们的实验表明,这种分类在区分正常腺体和癌变腺体方面取得了很好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mathematical analysis of colon glands for cancer diagnosis
Neoplastic diseases including cancer cause organizational changes in tissues. Histopathological examination, which is routinely used for the diagnosis and grading of these diseases, relies on pathologists to identify such tissue changes under a microscope. However, as this examination mainly relies on the visual interpretation of pathologists, it may lead to a considerable amount of subjectivity. To reduce the subjectivity level, it is proposed to use computational methods that provide objective measures. These methods quantify the tissue changes associated with disease by defining features on tissue images. In this paper, colon glands are mathematically analyzed making use of different feature extraction approaches. In this analysis, morphological, intensity-based, and textural features are investigated and glands are classified using these features. Working on the images of 108 colon tissues of 36 patients, our experiments demonstrate that this classification leads to promising results for differentiating normal glands from the cancerous ones.
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